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A method to visualize and adjust for selection bias in prevalent cohort studies.

机译:可视化和调整流行队列研究中选择偏倚的方法。

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摘要

Selection bias and confounding are concerns in cohort studies where the reason for inclusion of subjects in the cohort may be related to the outcome of interest. Selection bias in prevalent cohorts is often corrected by excluding observation time and events during the first time period after inclusion in the cohort. This time period must be chosen carefully-long enough to minimize selection bias but not too long so as to unnecessarily discard observation time and events. A novel method visualizing and estimating selection bias is described and exemplified by using 2 real cohort study examples: a study of hepatitis C virus infection and a study of monoclonal gammopathy of undetermined significance. The method is based on modeling the hazard for the outcome of interest as a function of time since inclusion in the cohort. The events studied were "hospitalizations for kidney-related disease" in the hepatitis C virus cohort and "death" in the monoclonal gammopathy of undetermined significance cohort. Both cohorts show signs of considerable selection bias as evidenced by increased hazard in the time period after inclusion in the cohort. The method was very useful in visualizing selection bias and in determining the initial time period to be excluded from the analyses.
机译:选择偏倚和混淆是队列研究的关注点,队列中纳入受试者的原因可能与感兴趣的结果有关。通常通过排除纳入队列后第一时间段内的观察时间和事件来纠正流行队列中的选择偏倚。必须仔细选择此时间段,该时间段应足够长以最大程度地减少选择偏差,但又不能太长,以免不必要地丢弃观察时间和事件。通过两个真实的队列研究实例,描述并举例说明了一种可视化和估计选择偏见的新颖方法:研究丙型肝炎病毒感染和研究意义不明的单克隆丙种球蛋白病。该方法基于对自纳入队列以来感兴趣的结果作为时间的函数进行风险建模。所研究的事件是丙型肝炎病毒队列中的“肾脏相关疾病的住院治疗”和未定意义队列中的单克隆丙种球蛋白病的“死亡”。两个队列均显示出相当大的选择偏见迹象,这被纳入队列后一段时间内的危险增加所证明。该方法对于可视化选择偏差和确定要从分析中排除的初始时间段非常有用。

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